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Cluster Computing

, Volume 22, Supplement 1, pp 1837–1846 | Cite as

Big data and rule-based recommendation system in Internet of Things

  • Hanjo Jeong
  • Byeonghwa Park
  • Minwoo Park
  • Ki-Bong Kim
  • Kiseok ChoiEmail author
Article

Abstract

This paper proposes a recommendation system based on big data framework and rule-based system in the era of Internet of Things. With the emergence of the smart devices beginning from smart phones extends to the general electronic devices such as smart tv sets, refrigerators, washing machines, robot vacuums, and so on. Such smart devices make it possible to collect the device-usage logs of end users whereby a system is able to analyze it to find the usage patterns of the end users and make recommendations to the end users. Furthermore, this allows to make recommendations on the individual users since the smart devices have their own identifiers such as MAC address and IPv6 address. The smart devices also have matched information with the end user id/s. In this study, we propose a method for analyzing the devise-usage patterns in semi-real time based on the big-data system architecture. We also present a recommendation framework which makes device-usage recommendations by using a rule-based system architecture with the analyzed usage patterns. Lastly, we introduce a segmentation-based analysis and recommendation framework to make recommendations based not only on his or her own usage patterns, but also on the common usage patterns of the users who are living in a similar context. The segmentation is formed also based on the types of the device usages, so that the analysis can be performed in a batch process thereby enabling to make the recommendations in real time based on the pre-analyzed usage patterns.

Keywords

Recommendation system Rule-based system Big data Internet of Things 

Notes

Acknowledgements

This research was supported by Maximize the Value of National Science and Technology by Strengthen Sharing/Collaboration of National R&D Information funded by the Korea Institute of Science and Technology Information (KISTI).

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Copyright information

© Springer Science+Business Media, LLC 2017

Authors and Affiliations

  • Hanjo Jeong
    • 1
  • Byeonghwa Park
    • 2
  • Minwoo Park
    • 1
  • Ki-Bong Kim
    • 3
  • Kiseok Choi
    • 1
    Email author
  1. 1.NTIS CenterKorea Institute of Science and Technology InformationDaejeonRepublic of Korea
  2. 2.Department of Business StatisticsHannam UniversityDaejeonRepublic of Korea
  3. 3.Department of Computer & InformationDaejeon Health Institute of TechnologyDaejeonRepublic of Korea

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